Cargando…

A scoring function based on solvation thermodynamics for protein structure prediction

We predict protein structure using our recently developed free energy function for describing protein stability, which is focused on solvation thermodynamics. The function is combined with the current most reliable sampling methods, i.e., fragment assembly (FA) and comparative modeling (CM). The pre...

Descripción completa

Detalles Bibliográficos
Autores principales: Du, Shiqiao, Harano, Yuichi, Kinoshita, Masahiro, Sakurai, Minoru
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Biophysical Society of Japan (BSJ) 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4629643/
https://www.ncbi.nlm.nih.gov/pubmed/27493529
http://dx.doi.org/10.2142/biophysics.8.127
_version_ 1782398603664293888
author Du, Shiqiao
Harano, Yuichi
Kinoshita, Masahiro
Sakurai, Minoru
author_facet Du, Shiqiao
Harano, Yuichi
Kinoshita, Masahiro
Sakurai, Minoru
author_sort Du, Shiqiao
collection PubMed
description We predict protein structure using our recently developed free energy function for describing protein stability, which is focused on solvation thermodynamics. The function is combined with the current most reliable sampling methods, i.e., fragment assembly (FA) and comparative modeling (CM). The prediction is tested using 11 small proteins for which high-resolution crystal structures are available. For 8 of these proteins, sequence similarities are found in the database, and the prediction is performed with CM. Fairly accurate models with average Cα root mean square deviation (RMSD) ∼ 2.0 Å are successfully obtained for all cases. For the rest of the target proteins, we perform the prediction following FA protocols. For 2 cases, we obtain predicted models with an RMSD ∼ 3.0 Å as the best-scored structures. For the other case, the RMSD remains larger than 7 Å. For all the 11 target proteins, our scoring function identifies the experimentally determined native structure as the best structure. Starting from the predicted structure, replica exchange molecular dynamics is performed to further refine the structures. However, we are unable to improve its RMSD toward the experimental structure. The exhaustive sampling by coarse-grained normal mode analysis around the native structures reveals that our function has a linear correlation with RMSDs < 3.0 Å. These results suggest that the function is quite reliable for the protein structure prediction while the sampling method remains one of the major limiting factors in it. The aspects through which the methodology could further be improved are discussed.
format Online
Article
Text
id pubmed-4629643
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher The Biophysical Society of Japan (BSJ)
record_format MEDLINE/PubMed
spelling pubmed-46296432016-08-04 A scoring function based on solvation thermodynamics for protein structure prediction Du, Shiqiao Harano, Yuichi Kinoshita, Masahiro Sakurai, Minoru Biophysics (Nagoya-shi) Regular Article We predict protein structure using our recently developed free energy function for describing protein stability, which is focused on solvation thermodynamics. The function is combined with the current most reliable sampling methods, i.e., fragment assembly (FA) and comparative modeling (CM). The prediction is tested using 11 small proteins for which high-resolution crystal structures are available. For 8 of these proteins, sequence similarities are found in the database, and the prediction is performed with CM. Fairly accurate models with average Cα root mean square deviation (RMSD) ∼ 2.0 Å are successfully obtained for all cases. For the rest of the target proteins, we perform the prediction following FA protocols. For 2 cases, we obtain predicted models with an RMSD ∼ 3.0 Å as the best-scored structures. For the other case, the RMSD remains larger than 7 Å. For all the 11 target proteins, our scoring function identifies the experimentally determined native structure as the best structure. Starting from the predicted structure, replica exchange molecular dynamics is performed to further refine the structures. However, we are unable to improve its RMSD toward the experimental structure. The exhaustive sampling by coarse-grained normal mode analysis around the native structures reveals that our function has a linear correlation with RMSDs < 3.0 Å. These results suggest that the function is quite reliable for the protein structure prediction while the sampling method remains one of the major limiting factors in it. The aspects through which the methodology could further be improved are discussed. The Biophysical Society of Japan (BSJ) 2012-09-19 /pmc/articles/PMC4629643/ /pubmed/27493529 http://dx.doi.org/10.2142/biophysics.8.127 Text en ©2012 THE BIOPHYSICAL SOCIETY OF JAPAN
spellingShingle Regular Article
Du, Shiqiao
Harano, Yuichi
Kinoshita, Masahiro
Sakurai, Minoru
A scoring function based on solvation thermodynamics for protein structure prediction
title A scoring function based on solvation thermodynamics for protein structure prediction
title_full A scoring function based on solvation thermodynamics for protein structure prediction
title_fullStr A scoring function based on solvation thermodynamics for protein structure prediction
title_full_unstemmed A scoring function based on solvation thermodynamics for protein structure prediction
title_short A scoring function based on solvation thermodynamics for protein structure prediction
title_sort scoring function based on solvation thermodynamics for protein structure prediction
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4629643/
https://www.ncbi.nlm.nih.gov/pubmed/27493529
http://dx.doi.org/10.2142/biophysics.8.127
work_keys_str_mv AT dushiqiao ascoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction
AT haranoyuichi ascoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction
AT kinoshitamasahiro ascoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction
AT sakuraiminoru ascoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction
AT dushiqiao scoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction
AT haranoyuichi scoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction
AT kinoshitamasahiro scoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction
AT sakuraiminoru scoringfunctionbasedonsolvationthermodynamicsforproteinstructureprediction